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Focal Loss in 3D Object Detection

Authors :
Yun, Peng
Tai, Lei
Wang, Yuan
Liu, Chengju
Liu, Ming
Yun, Peng
Tai, Lei
Wang, Yuan
Liu, Chengju
Liu, Ming
Publication Year :
2019

Abstract

3D object detection is still an open problem in autonomous driving scenes. When recognizing and localizing key objects from sparse 3D inputs, autonomous vehicles suffer from a larger continuous searching space and higher fore–background imbalance compared to image-based object detection. In this letter, we aim to solve this fore–background imbalance in 3D object detection. Inspired by the recent use of focal loss in image-based object detection, we extend this hard-mining improvement of binary cross entropy to point-cloud-based object detection and conduct experiments to show its performance based on two different 3D detectors: 3D-FCN and VoxelNet. The evaluation results show up to 11.2AP gains through the focal loss in a wide range of hyperparameters for 3D object detection.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1125201443
Document Type :
Electronic Resource